Introduction to Hierarchical Bayesian Modeling for Ecological Data

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A01=Eric Parent
A01=Etienne Rivot
Abundance Indices
advanced statistical inference
and prediction
Author_Eric Parent
Author_Etienne Rivot
Bayes Factors
Bayesian statistical modeling for ecology
Beta Binomial Model
building statistical models
Category=PBT
Conditional Probability Distributions
conditional reasoning and Bayesian
Dag
distribution
distributions
ecological data analysis
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
estimation
factor
fish population studies
hierarchical Bayesian ecological modeling
Hierarchical Bayesian Modeling
inference
joint
latent variable modeling
Linear Normal Model
M3 M4
marginal
Marginal Likelihood
Marginal Posterior Distributions
Marginal Posterior Pdf
MCMC
MCMC Algorithm
MCMC Chain
MCMC Sample
Observation Errors
pdf
posterior
Posterior Distribution
Posterior Pdf
Posterior Pdfs
Posterior Predictive Distribution
predictive
prior
Prior Distribution
R programming for statistics
Ricker Model
Salmon Juveniles
Salmon Life Cycle
Spawning Run
State-space modeling
state-space models
statistical ecology
statistical framework for modeling
Successive Removal

Product details

  • ISBN 9781584889199
  • Weight: 725g
  • Dimensions: 156 x 234mm
  • Publication Date: 21 Aug 2012
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
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Making statistical modeling and inference more accessible to ecologists and related scientists, Introduction to Hierarchical Bayesian Modeling for Ecological Data gives readers a flexible and effective framework to learn about complex ecological processes from various sources of data. It also helps readers get started on building their own statistical models.

The text begins with simple models that progressively become more complex and realistic through explanatory covariates and intermediate hidden states variables. When fitting the models to data, the authors gradually present the concepts and techniques of the Bayesian paradigm from a practical point of view using real case studies. They emphasize how hierarchical Bayesian modeling supports multidimensional models involving complex interactions between parameters and latent variables. Data sets, exercises, and R and WinBUGS codes are available on the authors’ website.

This book shows how Bayesian statistical modeling provides an intuitive way to organize data, test ideas, investigate competing hypotheses, and assess degrees of confidence of predictions. It also illustrates how conditional reasoning can dismantle a complex reality into more understandable pieces. As conditional reasoning is intimately linked with Bayesian thinking, considering hierarchical models within the Bayesian setting offers a unified and coherent framework for modeling, estimation, and prediction.

Éric Parent is head of the Research Laboratory for Risk Management in Environmental Sciences (Team MORSE) and a professor in applied statistics and probabilistic modeling for environmental engineering at the National Institute for Rural Engineering, Water and Forest Management (ENGREF/AgroParisTech) in Paris, France. Dr. Parent’s research encompasses Bayesian theory and applications, with special emphasis on environmental systems modeling.

Étienne Rivot is a researcher in the Fisheries Ecology Laboratory at Agrocampus Ouest in Rennes, France. Dr. Rivot’s research focuses on the application of Bayesian statistical modeling for the analysis of ecological data, inference, and predictions.

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